结肠镜检查
医学
人工智能
计算机辅助诊断
医学物理学
活检
放射科
计算机科学
结直肠癌
内科学
癌症
作者
Omer F. Ahmad,António Sampaio Soares,Evangelos B. Mazomenos,Patrick Brandão,Roser Vega,Edward Seward,Danail Stoyanov,Manish Chand,Laurence Lovat
标识
DOI:10.1016/s2468-1253(18)30282-6
摘要
Computer-aided diagnosis offers a promising solution to reduce variation in colonoscopy performance. Pooled miss rates for polyps are as high as 22%, and associated interval colorectal cancers after colonoscopy are of concern. Optical biopsy, whereby in-vivo classification of polyps based on enhanced imaging replaces histopathology, has not been incorporated into routine practice because it is limited by interobserver variability and generally only meets accepted standards in expert settings. Real-time decision-support software has been developed to detect and characterise polyps, and also to offer feedback on the technical quality of inspection. Some of the current algorithms, particularly with recent advances in artificial intelligence techniques, match human expert performance for optical biopsy. In this Review, we summarise the evidence for clinical applications of computer-aided diagnosis and artificial intelligence in colonoscopy.
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